Evaluation of Diverse Convolutional Neural Networks and Training Strategies for Wheat Leaf Disease Identification with Field-Acquired Photographs

被引:25
作者
Jiang, Jiale [1 ]
Liu, Haiyan [1 ]
Zhao, Chen [2 ]
He, Can [1 ]
Ma, Jifeng [1 ]
Cheng, Tao [1 ]
Zhu, Yan [1 ]
Cao, Weixing [1 ]
Yao, Xia [1 ]
机构
[1] Nanjing Agr Univ, Natl Engn & Technol Ctr Informat Agr NETCIA, Engn Res Ctr Smart Agr,MOE,Jiangsu Key Lab Inform, Inst Smart Agr,MARA Key Lab Crop Syst Anal & Deci, Nanjing 210095, Peoples R China
[2] King Abdullah Univ Sci & Technol KAUST, Thuwal 23955, Saudi Arabia
基金
中国国家自然科学基金;
关键词
wheat leaf diseases; deep learning; scene labeling; convolutional neural networks; transfer learning;
D O I
10.3390/rs14143446
中图分类号
X [环境科学、安全科学];
学科分类号
08 ; 0830 ;
摘要
Tools for robust identification of crop diseases are crucial for timely intervention by farmers to minimize yield losses. Visual diagnosis of crop diseases is time-consuming and laborious, and has become increasingly unsuitable for the needs of modern agricultural production. Recently, deep convolutional neural networks (CNNs) have been used for crop disease diagnosis due to their rapidly improving accuracy in labeling images. However, previous CNN studies have mostly used images of single leaves photographed under controlled conditions, which limits operational field use. In addition, the wide variety of available CNNs and training options raises important questions regarding optimal methods of implementation of CNNs for disease diagnosis. Here, we present an assessment of seven typical CNNs (VGG-16, Inception-v3, ResNet-50, DenseNet-121, EfficentNet-B6, ShuffleNet-v2 and MobileNetV3) based on different training strategies for the identification of wheat main leaf diseases (powdery mildew, leaf rust and stripe rust) using field images. We developed a Field-based Wheat Diseases Images (FWDI) dataset of field-acquired images to supplement the public PlantVillage dataset of individual leaves imaged under controlled conditions. We found that a transfer-learning method employing retuning of all parameters produced the highest accuracy for all CNNs. Based on this training strategy, Inception-v3 achieved the highest identification accuracy of 92.5% on the test dataset. While lightweight CNN models (e.g., ShuffleNet-v2 and MobileNetV3) had shorter processing times (<0.007 s per image) and smaller memory requirements for the model parameters (<20 MB), their accuracy was relatively low (similar to 87%). In addition to the role of CNN architecture in controlling overall accuracy, environmental effects (e.g., residual water stains on healthy leaves) were found to cause misclassifications in the field images. Moreover, the small size of some target symptoms and the similarity of symptoms between some different diseases further reduced the accuracy. Overall, the study provides insight into the collective effects of model architecture, training strategies and input datasets on the performance of CNNs, providing guidance for robust CNN design for timely and accurate crop disease diagnosis in a real-world environment.
引用
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页数:15
相关论文
共 48 条
  • [1] Lightweight convolutional neural network model for field wheat ear disease identification
    Bao, Wenxia
    Yang, Xinghua
    Liang, Dong
    Hu, Gensheng
    Yang, Xianjun
    [J]. COMPUTERS AND ELECTRONICS IN AGRICULTURE, 2021, 189
  • [2] Factors influencing the use of deep learning for plant disease recognition
    Barbedo, Jayme G. A.
    [J]. BIOSYSTEMS ENGINEERING, 2018, 172 : 84 - 91
  • [3] Deep Learning for Tomato Diseases: Classification and Symptoms Visualization
    Brahimi, Mohammed
    Boukhalfa, Kamel
    Moussaoui, Abdelouahab
    [J]. APPLIED ARTIFICIAL INTELLIGENCE, 2017, 31 (04) : 299 - 315
  • [4] Chollet F., 2018, DEEP LEARNING R MANN
  • [5] Cowger C, 2012, CABI PLANT PROT SER, P84, DOI 10.1079/9781845938185.0084
  • [6] Curtis B.C., 2002, BREAD WHEAT IMPROVEM
  • [7] Deep learning models for plant disease detection and diagnosis
    Ferentinos, Konstantinos P.
    [J]. COMPUTERS AND ELECTRONICS IN AGRICULTURE, 2018, 145 : 311 - 318
  • [8] A review of wheat diseases-a field perspective
    Figueroa, Melania
    Hammond-Kosack, Kim E.
    Solomon, Peter S.
    [J]. MOLECULAR PLANT PATHOLOGY, 2018, 19 (06) : 1523 - 1536
  • [9] High-Performance Deep Neural Network-Based Tomato Plant Diseases and Pests Diagnosis System With Refinement Filter Bank
    Fuentes, Alvaro F.
    Yoon, Sook
    Lee, Jaesu
    Park, Dong Sun
    [J]. FRONTIERS IN PLANT SCIENCE, 2018, 9
  • [10] Deep Residual Learning for Image Recognition
    He, Kaiming
    Zhang, Xiangyu
    Ren, Shaoqing
    Sun, Jian
    [J]. 2016 IEEE CONFERENCE ON COMPUTER VISION AND PATTERN RECOGNITION (CVPR), 2016, : 770 - 778